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Erschienen in: European Radiology 4/2019

10.10.2018 | Emergency Radiology

Radiomics features on non-contrast-enhanced CT scan can precisely classify AVM-related hematomas from other spontaneous intraparenchymal hematoma types

verfasst von: Yupeng Zhang, Baorui Zhang, Fei Liang, Shikai Liang, Yuxiang Zhang, Peng Yan, Chao Ma, Aihua Liu, Feng Guo, Chuhan Jiang

Erschienen in: European Radiology | Ausgabe 4/2019

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Abstract

Objective

To investigate the classification ability of quantitative radiomics features extracted on non-contrast-enhanced CT (NECT) image for discrimination of AVM-related hematomas from those caused by other etiologies.

Methods

Two hundred sixty-one cases with intraparenchymal hematomas underwent baseline CT scan between 2012 and 2017 in our center. Cases were split into a training dataset (n = 180) and a test dataset (n = 81). Hematoma types were dichotomized into two classes, namely, AVM-related hematomas (AVM-H) and hematomas caused by other etiologies. A total of 576 radiomics features of 6 feature groups were extracted from NECT. We applied 11 feature selection methods to select informative features from each feature group. Selected radiomics features and the clinical feature age were then used to fit machine learning classifiers. In combination of the 11 feature selection methods and 8 classifiers, we constructed 88 predictive models. Predictive models were evaluated and the optimal one was selected and evaluated.

Results

The selected radiomics model was RELF_Ada, which was trained with Adaboost classifier and features selected by Relief method. Cross-validated area under the curve (AUC) on training dataset was 0.988 and the relative standard deviation (RSD%) was 0.062. AUC on the test dataset was 0.957. Accuracy (ACC), sensitivity, specificity, positive prediction value (PPV), and negative predictive value (NPV) were 0.926, 0.889, 0.937, 0.800, and 0.967, respectively.

Conclusions

Machine learning models with radiomics features extracted from NECT scan accurately discriminated AVM-related intraparenchymal hematomas from those caused by other etiologies. This technique provided a fast, non-invasive approach without use of contrast to diagnose this disease.

Key Points

• Radiomics features from non-contrast-enhanced CT accurately discriminated AVM-related hematomas from those caused by other etiologies.
• AVM-related hematomas tended to be larger in diameter, coarser in texture, and more heterogeneous in composition.
• Adaboost classifier is an efficient approach for analyzing radiomics features.
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Metadaten
Titel
Radiomics features on non-contrast-enhanced CT scan can precisely classify AVM-related hematomas from other spontaneous intraparenchymal hematoma types
verfasst von
Yupeng Zhang
Baorui Zhang
Fei Liang
Shikai Liang
Yuxiang Zhang
Peng Yan
Chao Ma
Aihua Liu
Feng Guo
Chuhan Jiang
Publikationsdatum
10.10.2018
Verlag
Springer Berlin Heidelberg
Erschienen in
European Radiology / Ausgabe 4/2019
Print ISSN: 0938-7994
Elektronische ISSN: 1432-1084
DOI
https://doi.org/10.1007/s00330-018-5747-x

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